Breadcrumbs navigation
Machine learning political orders
Louise Amoore discusses her Review of International Studies (RIS) article with editor Martin Coward. They touch on the journey that led to the article, the key messages, how it relates to other fields such as computer science and philosophy, and more.
A significant set of epistemic and political transformations are taking place as states and societies begin to understand themselves and their problems through the paradigm of deep neural network algorithms. A machine learning political order does not merely change the political technologies of governance, but is itself a reordering of politics, of what the political can be.
You can read the full article at: https://doi.org/10.1017/S0260210522000031
Find out more about the algorithmic societies project at: http://algorithmicsocieties.org/
This article is currently open access, in our journal Review of International Studies (RIS). BISA members receive access to RIS (and our other journal European Journal of International Security) as a benefit of membership. To gain access to these journals, and read more articles like this, log in to your BISA account and scroll down to the 'Membership benefits' section. If you're not yet a member join today.
Full article abstract
A significant set of epistemic and political transformations are taking place as states and societies begin to understand themselves and their problems through the paradigm of deep neural network algorithms. A machine learning political order does not merely change the political technologies of governance, but is itself a reordering of politics, of what the political can be. When algorithmic systems reduce the pluridimensionality of politics to the output of a model, they simultaneously foreclose the potential for other political claims to be made and alternative political projects to be built. More than this foreclosure, a machine learning political order actively profits and learns from the fracturing of communities and the destabilising of democratic rights. The transformation from rules-based algorithms to deep learning models has paralleled the undoing of rules-based social and international orders – from the use of machine learning in the campaigns of the UK EU referendum, to the trialling of algorithmic immigration and welfare systems, and the use of deep learning in the COVID-19 pandemic – with political problems becoming reconfigured as machine learning problems. Machine learning political orders decouple their attributes, features and clusters from underlying social values, no longer tethered to notions of good governance or a good society, but searching instead for the optimal function of abstract representations of data.